A Convolutional Neural Network-based Ensemble Post-processing with Data Augmentation for Tropical Cyclone Precipitation Forecasts
Sing-Wen Chen (1), Joyce Juang (2), Charlotte Wang (1,3), Hui-Ling, Chang (2), Jing-Shan Hong (2), Chuhsing Kate Hsiao (1,3) ((1) Institute of, Health Data Analytics, Statistics, College of Public Health, National, Taiwan University, Taiwan. (2) Central Weather Administration

TL;DR
This paper introduces a CNN-based ensemble post-processing method with data augmentation for improved tropical cyclone precipitation forecasts, addressing data scarcity and incorporating dynamic variables for better accuracy.
Contribution
It presents a novel CNN model that uses data augmentation and dynamic variables, enhancing precipitation prediction for tropical cyclones compared to traditional models.
Findings
Data augmentation improves model performance.
Inclusion of dynamic variables enhances prediction accuracy.
The CNN-all model outperforms traditional CNNs in skill scores.
Abstract
Heavy precipitation from tropical cyclones (TCs) may result in disasters, such as floods and landslides, leading to substantial economic damage and loss of life. Prediction of TC precipitation based on ensemble post-processing procedures using machine learning (ML) approaches has received considerable attention for its flexibility in modeling and its computational power in managing complex models. However, when applying ML techniques to TC precipitation for a specific area, the available observation data are typically insufficient for comprehensive training, validation, and testing of the ML model, primarily due to the rapid movement of TCs. We propose to use the convolutional neural network (CNN) as a deep ML model to leverage the spatial information of precipitation. The proposed model has three distinct features that differentiate it from traditional CNNs applied in meteorology.…
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Taxonomy
TopicsTropical and Extratropical Cyclones Research · Computational Physics and Python Applications · Hydrological Forecasting Using AI
